We are investigating the difference in learning outcome achievement for students registered in the same course with two modes of instruction (distance and in-person). We set up an "experiment" in the fall term, with the treatment being two 75-minute classes per week that include chapter summaries and peer-to-peer interaction through group discussions, case studies, etc. The distance sections did not include any peer-to-peer interaction.
The course page, textbook, grading scheme, tests, etc., were identical. We could not randomly assign students to distance or in-person courses. Students were sent a letter to inform them of the "experiment" and encourage them to enrol in the model that best matched their learning style.
The course spans four months, and the panel has three time periods approximately 40 days apart. We only want to use course-specific data for the enrolled students because we want educators to be able to replicate our analysis without requiring ethics approval to collect data via survey or administrative data. Nearly all relevant explanatory and control variables are fixed over a four-month time period (i.e., incoming math ability, annual family income, etc.) This makes a fixed effects model or a pooled OLS with student level dummy variables ideal.
However, we cannot run a fixed effects model because our variable of interest, mode of instruction, is fixed. I welcome any and all suggestions on how to proceed.
The course page, textbook, grading scheme, tests, etc., were identical. We could not randomly assign students to distance or in-person courses. Students were sent a letter to inform them of the "experiment" and encourage them to enrol in the model that best matched their learning style.
The course spans four months, and the panel has three time periods approximately 40 days apart. We only want to use course-specific data for the enrolled students because we want educators to be able to replicate our analysis without requiring ethics approval to collect data via survey or administrative data. Nearly all relevant explanatory and control variables are fixed over a four-month time period (i.e., incoming math ability, annual family income, etc.) This makes a fixed effects model or a pooled OLS with student level dummy variables ideal.
However, we cannot run a fixed effects model because our variable of interest, mode of instruction, is fixed. I welcome any and all suggestions on how to proceed.
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